论文标题
实用的快速梯度标志攻击针对乳房X线图像分类器
Practical Fast Gradient Sign Attack against Mammographic Image Classifier
论文作者
论文摘要
人工智能(AI)多年来一直是主要研究的话题。尤其是,随着深度神经网络(DNN)的出现,这些研究取得了巨大成功。如今,机器能够比人类更快,更准确地做出决定。由于机器学习(ML)技术的出色发展,ML被使用了许多不同的领域,例如教育,医学,恶意软件检测,自动驾驶汽车等。尽管具有这种兴趣和许多成功的研究,但ML模型仍然容易受到对抗性攻击的影响。攻击者可以操纵干净的数据,以欺骗ML分类器以实现其欲望目标。例如;可以将良性样本修改为恶意样本,也可以将恶意样本改变为良性,而人类观察者无法识别这种修改。这可能导致许多财务损失或严重伤害,甚至死亡。本文背后的动机是,我们强调这个问题并想提高认识。因此,展示了乳房X线图像分类器对对抗性攻击的安全差距。我们使用Mamographic图像来训练我们的模型,然后根据准确性评估我们的模型性能。稍后,我们毒化了原始数据集并生成模型不分类的对抗样本。然后,我们使用结构相似性指数(SSIM)分析清洁图像和对抗图像之间的相似性。最后,我们展示了使用不同的中毒因素滥用滥用的成功。
Artificial intelligence (AI) has been a topic of major research for many years. Especially, with the emergence of deep neural network (DNN), these studies have been tremendously successful. Today machines are capable of making faster, more accurate decision than human. Thanks to the great development of machine learning (ML) techniques, ML have been used many different fields such as education, medicine, malware detection, autonomous car etc. In spite of having this degree of interest and much successful research, ML models are still vulnerable to adversarial attacks. Attackers can manipulate clean data in order to fool the ML classifiers to achieve their desire target. For instance; a benign sample can be modified as a malicious sample or a malicious one can be altered as benign while this modification can not be recognized by human observer. This can lead to many financial losses, or serious injuries, even deaths. The motivation behind this paper is that we emphasize this issue and want to raise awareness. Therefore, the security gap of mammographic image classifier against adversarial attack is demonstrated. We use mamographic images to train our model then evaluate our model performance in terms of accuracy. Later on, we poison original dataset and generate adversarial samples that missclassified by the model. We then using structural similarity index (SSIM) analyze similarity between clean images and adversarial images. Finally, we show how successful we are to misuse by using different poisoning factors.